| Literature DB >> 29215031 |
Elisa Omodei1, Matthew E Brashears2, Alex Arenas1.
Abstract
The social brain hypothesis argues that the need to deal with social challenges was key to our evolution of high intelligence. Research with non-human primates as well as experimental and fMRI studies in humans produce results consistent with this claim, leading to an estimate that human primary groups should consist of roughly 150 individuals. Gaps between this prediction and empirical observations can be partially accounted for using "compression heuristics", or schemata that simplify the encoding and recall of social information. However, little is known about the specific algorithmic processes used by humans to store and recall social information. We describe a mechanistic model of human network recall and demonstrate its sufficiency for capturing human recall behavior observed in experimental contexts. We find that human recall is predicated on accurate recall of a small number of high degree network nodes and the application of heuristics for both structural and affective information. This provides new insight into human memory, social network evolution, and demonstrates a novel approach to uncovering human cognitive operations.Entities:
Mesh:
Year: 2017 PMID: 29215031 PMCID: PMC5719413 DOI: 10.1038/s41598-017-17385-z
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1Sociogram of stimulus network presented as text to participants in the Balanced-Family condition. Solid ties are positively valenced (liking) while dashed lines are negatively valenced (disliking). Inset highlights ties incident to characters Lewis and Alyssa in red.
List of tested values of initially recalled ties. The first column indicates the characters(s) whose ties are correctly recalled in the initial phase, and the second column reports the total number of ties incident to the named characters.
| Characters | Number of ties |
|---|---|
| Isabelle | 2 |
| Victoria | 3 |
| James | 3 |
| Alyssa | 4 |
| Catherine | 4 |
| Lewis | 5 |
| Peter | 5 |
| James + Isabelle | 5 |
| Alyssa + Isabelle | 6 |
| James + Victoria | 6 |
| Catherine + Isabelle | 6 |
| Peter + Isabelle | 7 |
| Alyssa + Victoria | 7 |
| Catherine + Victoria | 7 |
| Lewis + Isabelle | 7 |
| Catherine + James | 7 |
| Lewis + Victoria | 8 |
| Peter + Victoria | 8 |
| Lewis + James | 8 |
| Peter + James | 8 |
| Catherine + Alyssa | 8 |
| Lewis + Alyssa | 9 |
| Peter + Alyssa | 9 |
| Catherine+James+Isabelle | 9 |
| Peter+James+Isabelle | 10 |
| Catherine+James+Victoria | 10 |
| Lewis+James+Isabelle | 10 |
| Catherine+Alyssa+Isabelle | 10 |
| Peter+Alyssa+Isabelle | 11 |
| Lewis+James+Victoria | 11 |
| Lewis+Alyssa+Isabelle | 11 |
| Peter+James+Victoria | 11 |
| Catherine+Alyssa+Victoria | 11 |
| Lewis+Alyssa+Victoria | 12 |
| Peter+Alyssa+Victoria | 12 |
Figure 2Panels A and B provide experimentally derived values (left most pane) for precision (Panel A) and coverage (Panel B). Right hand sections of Panels A and B provide precision and coverage, respectively, results for models based on ties incident to characters given in the corresponding column. Panels C and D provide δ values for precision and coverage, respectively.
Figure 3Panels A and B provide experimentally derived values (left most pane) for balanced (Panel A) and imbalanced (Panel B) conditions. Right hand sections of Panels A and B provide quality results for balanced and imbalanced conditions, respectively, for models based on ties incident to characters given in the corresponding column at x = 30%. Panels C and D provide δ values.